Saved in:
Bibliographic Details
Main Authors: Alhamzawi, Ghufran Abualhail, Alfoudi, Ali Saeed, Alsaeedi, Ali Hakem, Hadi, Suha Mohammed, Ahmed, Amjed Abbas, Hassan, Md. Riad, Satar, Nurhizam Safie Mohd, Yasseen, Waeel Yahya
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2507.19574
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866916864840433664
author Alhamzawi, Ghufran Abualhail
Alfoudi, Ali Saeed
Alsaeedi, Ali Hakem
Hadi, Suha Mohammed
Ahmed, Amjed Abbas
Hassan, Md. Riad
Satar, Nurhizam Safie Mohd
Yasseen, Waeel Yahya
author_facet Alhamzawi, Ghufran Abualhail
Alfoudi, Ali Saeed
Alsaeedi, Ali Hakem
Hadi, Suha Mohammed
Ahmed, Amjed Abbas
Hassan, Md. Riad
Satar, Nurhizam Safie Mohd
Yasseen, Waeel Yahya
contents Enhancing images in low-light conditions is an important challenge in computer vision. Insufficient illumination negatively affects the quality of images, resulting in low contrast, intensive noise, and blurred details. This paper presents a model for enhancing low-light images called tuning adaptive gamma correction (TAGC). The model is based on analyzing the color luminance of the low-light image and calculating the average color to determine the adaptive gamma coefficient. The gamma value is calculated automatically and adaptively at different illumination levels suitable for the image without human intervention or manual adjustment. Based on qualitative and quantitative evaluation, tuning adaptive gamma correction model has effectively improved low-light images while maintaining details, natural contrast, and correct color distribution. It also provides natural visual quality. It can be considered a more efficient solution for processing low-light images in multiple applications such as night surveillance, improving the quality of medical images, and photography in low-light environments.
format Preprint
id arxiv_https___arxiv_org_abs_2507_19574
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Tuning adaptive gamma correction (TAGC) for enhancing images in low ligh
Alhamzawi, Ghufran Abualhail
Alfoudi, Ali Saeed
Alsaeedi, Ali Hakem
Hadi, Suha Mohammed
Ahmed, Amjed Abbas
Hassan, Md. Riad
Satar, Nurhizam Safie Mohd
Yasseen, Waeel Yahya
Computer Vision and Pattern Recognition
Enhancing images in low-light conditions is an important challenge in computer vision. Insufficient illumination negatively affects the quality of images, resulting in low contrast, intensive noise, and blurred details. This paper presents a model for enhancing low-light images called tuning adaptive gamma correction (TAGC). The model is based on analyzing the color luminance of the low-light image and calculating the average color to determine the adaptive gamma coefficient. The gamma value is calculated automatically and adaptively at different illumination levels suitable for the image without human intervention or manual adjustment. Based on qualitative and quantitative evaluation, tuning adaptive gamma correction model has effectively improved low-light images while maintaining details, natural contrast, and correct color distribution. It also provides natural visual quality. It can be considered a more efficient solution for processing low-light images in multiple applications such as night surveillance, improving the quality of medical images, and photography in low-light environments.
title Tuning adaptive gamma correction (TAGC) for enhancing images in low ligh
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2507.19574